BACKGROUND
[0001] The present disclosure relates generally to systems and methods for processing data
representing sigmoid or growth curves, and more particularly to systems and methods
for determining characteristic cycle threshold (Ct) or elbow values in real-time Polymerase
Chain Reaction (PCR) amplification curves, or elbow values in other growth curves.
[0002] The Polymerase Chain Reaction is an
in vitro method for enzymatically synthesizing or amplifying defined nucleic acid sequences.
The reaction typically uses two oligonucleotide primers that hybridize to opposite
strands and flank a template or target DNA sequence that is to be amplified. Elongation
of the primers is catalyzed by a heat-stable DNA polymerase. A repetitive series of
cycles involving template denaturation, primer annealing, and extension of the annealed
primers by the polymerase results in an exponential accumulation of a specific DNA
fragment. Fluorescent probes or markers are typically used in the process to facilitate
detection and quantification of the amplification process
[0003] In particular, fluorescence techniques that are homogeneous and do not require the
addition of reagents after commencement of amplification or physical sampling of the
reactions for analysis are attractive. Exemplary homogeneous techniques use oligonucleotide
primers to locate the region of interest and fluorescent labels or dyes for signal
generation. Typical PCR-based methods use FRET oligonucleotide probes with two interacting
chromophores (adjacent hybridization probes, TaqMan probes, Molecular Beacons, Scorpions),
single oligonucleotide probes with only one fluorophore (G-quenching probes,
Crockett, A. O. and C. T. Wittwer, Anal. Biochem. 2001; 290: 89-97 and SimpleProbes, Idaho Technology), and techniques that use a dsDNA dye (e.g. SYBR
Green I) instead of covalent, fluorescently-labeled oligonucleotide probes. DNA-binding
dyes that bind to all double-stranded (ds)DNA in PCR cause fluorescence of the dye
upon binding. Hence, an increase in DNA product during PCR therefore leads to an increase
in fluorescence intensity and is measured at each cycle, thereby allowing DNA concentrations
to be quantified. However, a potential drawback is nonspecific binding to all dsDNA
PCR products impacting precise quantification. With reference to a standard dilution,
the dsDNA concentration in the PCR can be determined.
[0004] Fluorescent reporter probes detect only the DNA sequence to which the specific probe
binds and thus significantly increase specificity. This allows for the quantification
of amplificates even in the presence of non-specific DNA amplification. For detection
of several targets in the same reaction the fluorescent probes can be used in multiplex
assays, wherein specific probes with different-colored labels are used for each target.
The specificity of fluorescent reporter probes also prevents interference of measurements
caused by primer dimers, which are undesirable by-products during amplification. Most
applications are based on the interaction of a fluorescent reporter compound and a
quencher of fluorescence that are bound to the probe(s). As long as the reporter and
the quencher compound are in close proximity only a basal fluorescence may be detected
upon excitation with an excitation source (e.g. a laser, an LED and the like). Once
amplification occurs the interaction of the reporter and the quencher compound is
disrupted leading to a detectable fluorescent signal. An increase in the product amplified
at each PCR cycle causes a proportional increase in fluorescence due to the diminished
interaction of the reporter and the quencher compound. Generally, fluorescence is
detected and measured in each amplification cycle, and its geometric increase corresponding
to exponential increase of the product is used to determine the threshold cycle (CT)
in each reaction.
[0005] A typical kinetic PCR curve is shown in FIG. 1A, where fluorescence intensity values
are plotted vs. cycle number for a typical PCR process. In this case, the formation
of PCR products is monitored in each cycle of the PCR process. The amplification is
usually measured in thermocyclers which include components and devices for measuring
fluorescence signals during the amplification reaction. An example of such a thermocycler
is the Roche Diagnostics LightCycler (Cat. No. 20110468). The amplification products
are, for example, detected by means of fluorescent labeled hybridization probes which
only emit fluorescence signals when they are bound to the target nucleic acid or in
certain cases also by means of fluorescent dyes that bind to double-stranded DNA.
[0006] For a typical PCR curve, identifying a transition point at the end of the baseline
region, which is referred to commonly as the elbow value or cycle threshold (Ct) value,
is extremely useful for understanding characteristics of the PCR amplification process.
The Ct value may be used as a measure of efficiency of the PCR process. For example,
typically a defined signal threshold is determined for all reactions to be analyzed
and the number of cycles (Ct) required to reach this threshold value is determined
for the target nucleic acid as well as for reference nucleic acids such as a standard
or housekeeping gene. The absolute or relative copy numbers of the target molecule
(starting material) can be determined on the basis of the Ct values obtained for the
target nucleic acid and the reference nucleic acid (
Gibson et al., Genome Research 6:995-1001;
Bieche et al., Cancer Research 59:2759-2765, 1999;
WO 97/46707;
WO 97/46712;
WO 97/46714). The elbow value 20 at the end of the baseline region 15 in FIG. 1A would be in
the region of cycle number 30.
[0007] Amounts of RNA or DNA may be determined by comparing the results to a standard curve
produced by real-time PCR of serial dilutions of a known amount of RNA or DNA. The
absolute or relative copy number of a target molecule in the Polymerase Chain Reaction
(PCR) amplification can be determined by comparing the cycle threshold (Ct) value
with a standard curve, with the cycle threshold (Ct) value of a reference nucleic
acid or with an absolutely quantitated standard nucleic acid. In addition, the efficiency
of the Polymerase Chain Reaction (PCR) amplification may be determined by comparing
the cycle threshold (Ct) for each of the reactions to be analyzed with the cycle threshold
(Ct) of the reference nucleic acid.
US 2009/119020 discloses a method of determining Ct values in which a curve in which the background
is already subtracted is analysed and a curvature tangent at the Ct point is used
in determining the reliability of the Ct determination. The elbow value in a PCR curve
can be determined using several existing methods. For example, various methods determine
the actual value of the elbow (Ct) as the value where the fluorescence on a normalized
PCR curve reaches a predetermined signal level, called the AFL (arbitrary fluorescence
value), which can be sensitive to changes in the average baseline fluorescent level
in the pre-elbow PCR cycles. Other methods use the cycle number where the second derivative
of fluorescence vs. cycle number reaches a maximum, which can give late Ct values,
particularly for parabolic curves. Yet other methods use a tangent of the PCR curve
at the inflection point (maximum of first derivative), which is problematic for parabolic
curves as the maximum of the first derivative may not exist. (Guescini, BMC Bioinformatics,
9:326, 2008). Thus, the latter two methods both have drawbacks for parabolic curves.
US patent 8,219,366 solves the problem with parabolic curves by identifying such curves and using a different
technique for such problematic curves. Although this method works well for qualitative
real-time PCR, when applied to quantitative real-time PCR, it can lead to some increase
in imprecision at low copy numbers.
[0008] Therefore it is desirable to provide systems and methods for determining Ct value
in growth curves, such as real-time PCR amplification curves or other growth curves,
which overcome the above and other problems.
BRIEF SUMMARY
[0009] Systems, methods, and apparatuses are provided for determining a Ct according to
one technique that is applicable to various experimental conditions. A single technique
for determining Ct can be used for standard sigmoidal growth curves and for problematic
growth curves, such as parabolic curves. The Ct value can be determined as the intersection
of a line tangent to the growth curve at the maximum of the second derivative with
a baseline of the growth curve. Such a Ct value is usable for sigmoidal curves and
parabolic curves, and can provide linear calibration curves to achieve accuracy in
determining initial concentrations.
[0010] For example, embodiments can determine the slope and signal value of a double sigmoid
fit (i.e. to the raw data points of a PCR curve) at the second derivative maximum.
This slope and signal value are sufficient to draw a straight line that intersects
the baseline of the PCR curve. This intersection point can then be defined as the
Ct value.
[0011] According to one embodiment, a method determines a cycle threshold value Ct in a
growth curve of a growth process. A dataset representing a growth curve is received.
The dataset includes a plurality of data points. Each data point has a pair of coordinate
values of a cycle number and a signal strength of the growth process at the cycle
number. A function that approximates the dataset is calculated. A baseline of the
growth curve is determined, where the baseline is linear. A computer system computes
a first point of the function where a maximum in a second derivative of the function
occurs. The computer system determines a tangent line that is tangent to the function
at the first point. The computer system computes an intersection point of the tangent
line and the baseline, where the cycle number of the intersection point is the cycle
threshold value Ct.
[0012] Other embodiments are directed to systems and computer readable media associated
with methods described herein.
[0013] A better understanding of the nature and advantages of the present invention may
be gained with reference to the following detailed description and the accompanying
drawings.
BRIEF DESCRIPTION OF THE DRAWINGS
[0014]
FIG. 1A illustrates an example of a typical PCR growth curve, plotted as fluorescence
intensity vs. cycle number.
FIG. 1B is a simulated real-time PCR curve according to embodiments of the present
invention.
FIG. 2A shows a plot 200 of the first derivative 230 of PCR curve 110 according to
embodiments of the present invention.
FIG. 2B shows a plot 250 of the second derivative 260 of PCR curve 110 according to
embodiments of the present invention.
FIG. 3 shows a plot 300 with a simulated real-time PCR curve 110 illustrating a determination
of Ct 375 according to embodiments of the present invention
FIG. 4 is a flowchart illustrating a method 400 of determining a cycle threshold value
Ct in a growth curve of a growth process.
FIG. 5A shows a plot 500 for a PCR curve 510 scaled by 5 from PCR curve 110 according
to embodiments of the present invention. FIG. 5B shows a plot 500 for a PCR curve
510 scaled by 1/5 from PCR curve 110 according to embodiments of the present invention.
FIG. 6A shows a plot 600 of PCR data points 605 and function 610 that approximate
points 605 according to embodiments of the present invention. FIG. 6B shows a plot
650 of the second derivative 660 of function 610.
FIG. 7A shows a plot 700 of a calibration curve 710 determined according to embodiments
of the present invention. FIG. 7B shows an analogous plot 750 of a calibration curve
760 determined using the second derivative maximum.
FIG. 8A shows a plot 800 of a correlation line 810 between the measured Ct using the
second derivative maximum, as well as a parabolic method for parabolic curves and
expected Ct.
FIG. 8B shows a plot 850 of a correlation line 860 between the measured Ct using an
embodiment of the present invention and the expected Ct.
FIG. 9 shows a plot 900 of two raw data curves 910 and 920.
FIG. 10 shows a block diagram of an example computer system 1200 usable with system
and methods according to embodiments of the present invention.
FIG. 11 is an example of general block diagram showing the relation between software
and hardware resources that may be used to implement the method and system of the
invention.
FIG. 12 is an example of general block diagram showing the relation between a thermocycler
device and a computer system.
DETAILED DESCRIPTION
[0015] Growth curves (e.g., real-time Polymerase Chain Reaction (PCR) curves) of a sample
can be analyzed to determine an initial concentration. Typically, a cycle threshold
Ct (also called an elbow value) is used as a proxy for the initial concentration,
where a calibration curve can be used to determine a corresponding initial concentration
from a measured Ct. However, it can be difficult to determine consistent Ct values,
as certain growth (amplification) curves can be problematic. One can use different
techniques for these problematic curves, but doing so can compromise the calibration
curve and the ability to properly quantify the initial concentration.
[0016] Embodiments of the present invention provide a single technique for determining Ct
that can be used for standard sigmoidal growth curves and for problematic growth curves,
such as parabolic curves. The Ct value can be determined as the intersection of a
line tangent to the growth curve at the maximum of the second derivative with a baseline
of the growth curve. Such a Ct value is usable for sigmoidal curves and parabolic
curves, and can provide linear calibration curves to achieve accuracy in determining
initial concentrations. An initial description of a real-time PCR curve is first provided.
I. GENERAL OVERVIEW
[0017] One example of an amplification curve 10 in the context of a kinetic PCR process
is shown in FIG. 1A. As shown, the curve 10 includes a lag phase region 15, and an
exponential phase region 25. Lag phase region 15 is commonly referred to as the baseline
or baseline region. Such a curve includes a transition region 20 linking the lag phase
and the exponential phase. Region 20 is commonly referred to as the elbow or elbow
region. The elbow region typically defines an end to the baseline and a transition
in the growth or amplification rate of the underlying process. Identifying a specific
transition point in region 20 can be useful for analyzing the behavior of the underlying
process.
[0018] In a typical PCR curve, identifying a transition point referred to as the elbow value
or cycle threshold (Ct) value is extremely useful for understanding efficiency characteristics
of the PCR process. For example, the Ct value can be used to provide quantization
of the amount of DNA present in the sample being analyzed. Quantization is obtained
by performing a calibration curve of the Log(DNA Amount) vs. Ct value. Subsequent
samples can then use Ct values along with the calibration curve to directly obtain
estimates of DNA in a sample. Ct values can also be used to provide qualitative information
on the DNA sample.
[0019] Other processes that may provide similar sigmoid or growth curves include bacterial
processes, enzymatic processes and binding processes. In bacterial growth curves,
for example, the transition point of interest has been referred to as the time in
lag phase, λ. Other specific processes that produce data curves that may be analyzed
according to the present invention include strand displacement amplification (SDA)
processes, nucleic acid sequence-based amplification (NASBA) processes and transcription
mediated amplification (TMA) processes. Examples of SDA and NASBA processes and data
curves can be found in
Wang, Sha-Sha, et al., "Homogeneous Real-Time Detection of Single-Nucleotide Polymorphisms
by Strand Displacement Amplification on the BD ProbeTec ET System," Clin Chem 2003
49(10):1599, and
Weusten, Jos J.A.M., et al., "Principles of Quantitation of Viral Loads Using Nucleic
Acid Sequence-Based Amplification in Combination With Homogeneous Detection Using
Molecular Beacons," Nucleic Acids Research, 2002 30(6):26, respectively. Thus, although the remainder of this document will discuss embodiments
and aspects of the invention in terms of its applicability to PCR curves, it should
be appreciated that the present invention may be applied to data curves related to
other processes.
[0020] As shown in FIG. 1A, data for a typical PCR growth curve can be represented in a
two-dimensional coordinate system, for example, with PCR cycle number defining the
x-axis and an indicator of accumulated polynucleotide growth defining the y-axis.
Typically, the indicator of accumulated growth is a fluorescence intensity value as
the use of fluorescent markers is perhaps the most widely used labeling scheme. However,
it should be understood that other indicators may be used depending on the particular
labeling and/or detection scheme used. Examples of other useful indicators of accumulated
signal growth include luminescence intensity, chemiluminescence intensity, bioluminescence
intensity, phosphorescence intensity, charge transfer, voltage, current, power, energy,
temperature, viscosity, light scatter, radioactive intensity, reflectivity, transmittance,
and absorbance. All such examples fall under a signal strength. The definition of
cycle can also include time, process cycles, unit operation cycles and reproductive
cycles.
II. DETERMINING Ct VALUE
[0021] Embodiments use the intersection of a line tangent to the growth curve at the maximum
of the second derivative with a baseline of the growth curve. To obtain the point
of the maximum of the second derivative of a growth curve, one can obtain a functional
approximation (curve fit) to the data points of the particular growth process (e.g.,
real-time PCR). A second derivative of the function can be computed and analyzed to
determine at what cycle (xval) the maximum occurs. The tangent line can then be determined
based on the slope of the function at xval. After a baseline of the function is determined,
the intersection of the tangent line and the baseline can be calculated. The Ct value
is then returned and may be displayed or otherwise used for further processing. Such
a Ct value is usable for sigmoidal curves and parabolic curves, and can provide linear
calibration curves to achieve accuracy in determining initial concentrations. Simulated
growth curves are now used to illustrate embodiments.
[0022] FIG. 1B shows a plot 100 with a simulated real-time PCR curve 110 according to embodiments
of the present invention. PCR curve 110 has cycle number on the horizontal (x) axis
and intensity (e.g., fluorescence) on the vertical (y) axis. PCR curve 110 has a well-defined
baseline 115. As shown, baseline 115 is a horizontal line at intensity (y) equal to
two. For ease of presentation, there is no slope to simulated baseline 115. However,
a baseline may have any linear form with a slope. Elbow region 120 lies between baseline
115 and exponential phase region 125. Exponential phase region 125 includes inflexion
point 128 where PCR curve 110 begins to curve downward, as opposed to upward in elbow
region 120.
[0023] Although PCR growth curve 110 is simulated, a PCR growth curve can be determined
from data points of intensity taken at each cycle. A particular functional form can
be assumed, and parameters can be determined such that the particular functional form
approximates the data point. In some embodiments, a double sigmoid function with parameters
determined by a Levenberg-Marquardt (LM) regression process can be used to find an
approximation to the data points. In other embodiments, other functional forms may
be used, e.g., interpolation using polynomials with continuous boundary conditions
(e.g., continuous up to the second derivative) as may occur in finite element analysis,
a single sigmoid function, or any set of one or more functions with a continuous second
derivative across the regions of interest. In one aspect, the curve approximation
and parameters can be used to pre-process the data signal, e.g., to normalize the
data signal and/or to remove spikes or outlier data points as may be present in the
data signal.
[0024] FIG. 2A shows a plot 200 of the first derivative 230 of PCR curve 110 according to
embodiments of the present invention. The x-axis is still cycle number, but the y-axis
is in units of change in intensity per cycle, as plot 200 shows the first derivative.
First derivative 230 may be determined by taking the first derivative of the function
that resulted from a curve fitting process to the data points. As shown, first derivative
230 has a maximum at inflexion point 228 (which corresponds to inflexion point 128).
[0025] FIG. 2B shows a plot 250 of the second derivative 260 of PCR curve 110 according
to embodiments of the present invention. Second derivative 260 may be determined by
taking the second derivative of the function that resulted from a curve fitting process
to the data points. The inflexion point is shown as point 278, which corresponds to
where second derivative 260 is zero. Second derivative 260 has a maximum at point
265, which occurs at cycle xval. In FIG. 2B, xval equals 32.36. The maximum can be
found in a variety of ways, e.g., by searching along the values of second derivative
260 or by determining zeros of a third derivative. As one can see, 2
nd derivative maximum 265 occurs before inflexion point 278.
[0026] Once xval is determined, then a slope of the PCR curve at cycle xval can be determined.
In one embodiment, the slope can be determined by taking the value of the first derivative
at cycle xval. A line with this slope passing through the point of the maximum second
derivative can then provide a line tangent to the PCR curve at cycle xval.
[0027] FIG. 3 shows a plot 300 with a simulated real-time PCR curve 110 illustrating a determination
of Ct 375 according to embodiments of the present invention. The point 365 on PCR
curve 110 corresponds to the point of the maximum of the second derivative. Thus,
point 365 occurs at the same cycle xval as point 265, which is 32.36. The slope of
PCR curve 110 at xval (32.36) equals 0.8375. The intensity of PCR curve 110 at xval
(32.36) equals 4.05 (yval). The equation of the line going through (xval, yval) with
the given slope (0.8375) is: line(x) = yval + slp (x - xval) = 0.8375 x - 23.04. Tangent
line 375 follows this equation.
[0028] Baseline 115, which is at y=2, is shown extended as line 315. The intersection 370
of tangent line 375 with the baseline 315 can be determined by solving the following
equation for x: 0.8375 x - 23.04 = 2 (i.e. where equation for tangent line equals
equation for baseline, which may also have form of ax+b). The intersection has a solution
of x = 29.9, which is taken as the Ct value 375, as indicated by a down arrow to the
point on the x-axis where intersection 370 occurred. A benefit of using point 365
for determining tangent line 375 is that point 365 appears in the elbow region of
PCR curve 110. Thus, intersection 370 would also appear in the elbow region.
III. METHOD
[0029] FIG. 4 is a flowchart illustrating a method 400 of determining a cycle threshold
value Ct in a growth curve of a growth process. Method 400 can be computed by a computer
system. An examples growth process is real-time PCR amplification. Other growth processes
include bacterial processes, enzymatic processes and binding processes. Growth processes
can be measured by a series of points, with each data point providing a signal strength
at a cycle number.
[0030] At block 410, a dataset representing a growth curve is received. The dataset includes
a plurality of data points. Each data point has a pair of coordinate values {a cycle
number, a signal strength of the growth process at the cycle number}. For example,
each data point in FIG. 1A is designated by a fluorescence intensity and a cycle number.
Other types of signal strengths, including other types of intensities, are mentioned
herein.
[0031] At block 420, a computer system can calculate a function that approximates the dataset.
This function can be determined using a regression technique to identify a best fit
to the dataset. The function can have a predetermined functional form with variable
parameters, and the fitting process determine the parameters. In one implementation,
a double sigmoid functional form is used, which can provide an accurate function so
as to allow an accurate determination of the first and second derivative.
[0032] In one embodiment, a computer system determines the best fit of the double sigmoid
equation shown in equation (1) below.

[0033] For example, a double sigmoid Levenberg-Marquardt (DSLM) curve fit can be performed
as disclosed in
U.S. Patent No. 7,680,868 ("PCR Elbow Determination by Use of a Double Sigmoid Function Curve Fit with the
Levenberg-Marquardt Algorithm and Normalization"). In one embodiment, certain data
points may be removed before performing the curve fit, e.g., points at the beginning
or at the Growth curve. Various implementations and processing of the double sigmoid
equation have been introduced, for example the DSLM (double sigmoid Levenberg-Marquardt)
equation, the DSLM with options for baseline subtraction (BLS), baseline division
(BLD), and baseline subtraction with division (BLSD), the Curvature equation and others
as described in
US Application 2007/143385 US Application
US2007/148632; US Application
US2007/143070; and US Application
US2009/119020. At block 430, a baseline of the growth curve is determined. For example, baseline
15 of FIG. 1A can be determined from the data points. The end of the baseline can
be determined in various ways, e.g., by determining when the growth curve enters an
exponential region. The data points corresponding to the baseline can be fit to a
linear function to determine the baseline. As another example, the functional fit
can be used to determine the baseline. Equation (1) includes a linear part (ax+b),
which can be used to define the baseline.
[0034] At block 440, the computer system can compute a first point of the function where
a maximum in a second derivative of the function occurs. For example, the computer
system can determine the (xval) and (yval) positions corresponding to the maximum
of the second derivative of equation (1). The xval of the second derivative can be
computed, for example, as described for FIG. 2B. The yval can then be determined from
xval using the functional fit.
[0035] At block 450, the computer system can determine a tangent line that is tangent to
the function at the first point. In one embodiment, the slope (slp) of the functional
fit (e.g,, as determined using equation (1)) is determined at the first point (xval,yval).
The tangent line can then be determined using the equation:

[0036] At block 460, the computer system can compute an intersection point of the tangent
line and the baseline, where the cycle number of the intersection point is the cycle
threshold value Ct. The tangent line can be defined as above with line (x) and the
baseline by ax+b, as can be determined in various ways, such as from equation (1).
In one implementation, the following equation can be solved for x, where the values
a and
b are the values from equation (1)

which, has the solution

[0037] In the case where process 400 is implemented in an intelligence module (e.g., processor
executing instructions) resident in a PCR data acquiring device such as a thermocycler,
the data set may be provided to the intelligence module in real time as the data is
being collected, or it may be stored in a memory unit or buffer and provided to the
intelligence module after the experiment has been completed. Similarly, the data set
may be provided to a separate system such as a desktop computer system or other computer
system, via a network connection (e.g., LAN, VPN, intranet, Internet, etc.) or direct
connection (e.g., USB or other direct wired or wireless connection) to the acquiring
device, or provided on a portable medium such as a CD, DVD, floppy disk or the like.
In certain aspects, the data set includes data points having a pair of coordinate
values (or a 2-dimensional vector). For PCR data, the pair of coordinate values typically
represents the cycle number and the fluorescence intensity value.
[0038] The invention therefore provides a method of determining a cycle threshold value
Ct in a growth curve of a growth process. Herein, the method comprises receiving a
dataset representing a growth curve, the dataset including a plurality of data points,
each data point having a pair of coordinate values of a cycle number and a signal
strength of the growth process at the cycle number; calculating a function that approximates
the dataset; determining a baseline of the growth curve, the baseline being linear;
computing, with a computer system, a first point of the function where a maximum in
a second derivative of the function occurs; determining, with the computer system,
a tangent line that is tangent to the function at the first point; computing, with
the computer system, an intersection point of the tangent line and the baseline, the
cycle number of the intersection point being the cycle threshold value Ct.
[0039] In certain embodiments the first point has a cycle number of xval and a signal strength
of yval, and wherein determining the tangent line includes determining a slope slp
of the function at {xval,yval} to obtain the tangent line as yval+slp(x-xval), where
x is cycle number. In other embodiments the baseline is determined to have a functional
form of ax+b, and wherein computing the intersection point of the tangent line and
the baseline includes solving the following equation for x:

[0040] In certain embodiments the baseline is linear. In other embodiments the function
has a functional form of a double sigmoid. In particular embodiments the double sigmoid
has an equation:

[0041] In some embodiments the growth process is an amplification of a starting material.
In particular embodiments the amplification is polymerase chain reaction (PCR) amplification.
In certain embodiments the starting material includes a target nucleic acid.
[0042] In another embodiment the method further comprises removing a portion of the data
points before calculating the function. In yet another embodiment the baseline is
determined from the function. In certain embodiments the method further comprises
calculating the second derivative of the function.
[0043] In a further aspect of the invention, a method for measuring the efficiency of Polymerase
Chain Reaction (PCR) amplification is provided that comprises the steps of measuring
a fluorescence intensity value, a luminescence intensity value, a chemiluminescence
intensity value, a phosphorescence intensity value, a charge transfer value, a bioluminescence
intensity value, or an absorbance value representative for the accumulation of amplified
polynucleotide; determining a defined signal threshold and the number of cycles required
reaching this threshold value, wherein the cycle threshold (Ct) of the growth curve
is determined by method steps of receiving a dataset representing a growth curve,
the dataset including a plurality of data points, each data point having a pair of
coordinate values of a cycle number and a signal strength of the growth process at
the cycle number; calculating a function that approximates the dataset; determining
a baseline of the growth curve, the baseline being linear; computing, with a computer
system, a first point of the function where a maximum in a second derivative of the
function occurs; determining, with the computer system, a tangent line that is tangent
to the function at the first point; computing, with the computer system, an intersection
point of the tangent line and the baseline, the cycle number of the intersection point
being the cycle threshold value Ct; and determining the efficiency of the Polymerase
Chain Reaction (PCR) amplification by comparing the cycle threshold (Ct) for the amplified
polynucleotide with a cycle threshold (Ct) for a reference nucleic acid.
[0044] In another aspect of the invention, a method for determining the absolute or relative
copy numbers of a target molecule in a Polymerase Chain Reaction (PCR) amplification
is provided that comprises the steps of measuring a fluorescence intensity value,
a luminescence intensity value, a chemiluminescence intensity value, a phosphorescence
intensity value, a charge transfer value, a bioluminescence intensity value, or an
absorbance value representative for the accumulation of amplified polynucleotide;
determining the cycle threshold (Ct) of a growth curve by method steps of receiving
a dataset representing a growth curve, the dataset including a plurality of data points,
each data point having a pair of coordinate values of a cycle number and a signal
strength of the growth process at the cycle number; calculating a function that approximates
the dataset; determining a baseline of the growth curve, the baseline being linear;
computing, with a computer system, a first point of the function where a maximum in
a second derivative of the function occurs; determining, with the computer system,
a tangent line that is tangent to the function at the first point; computing, with
the computer system, an intersection point of the tangent line and the baseline, the
cycle number of the intersection point being the cycle threshold value Ct; and determining
the absolute or relative copy numbers of the target molecule on the basis of the Ct
value.
IV. SCALE INVARIANCE
[0045] It is beneficial to have a technique for determination of Ct to be in a scale invariant
manner for the following reasons. Different PCR machines can have different lamp intensities,
length of optical fiber, and thermal cyclers, all of which can act as a multiplier
on fluorescent intensity. Thus, the precise data points may depend on the machine,
but ideally the determination of Ct should not depend on the variability among machines.
The following figures show scale invariance of embodiments.
[0046] FIG. 5A shows a plot 500 for a PCR curve 510 scaled by 5 from PCR curve 110 according
to embodiments of the present invention. PCR curve 510 is the same as PCR curve 110
except being multiplied by 5. As shown, the tangent line 535 at the maximum of the
second derivative intersects with the baseline 515 at the same cycle number (29.9)
as determined in FIG. 3 for PCR curve 110. Thus, even if the PCR curve is multiplied
by a constant (e.g., due to using a different machine), then one gets the same Ct.
[0047] FIG. 5B shows a plot 500 for a PCR curve 510 scaled by 1/5 from PCR curve 110 according
to embodiments of the present invention. PCR curve 560 is the same as PCR curve 110
except being divided by 5. As shown, the tangent line 585 at the maximum of the second
derivative intersects with the baseline 565 at the same cycle number (29.9) as determined
in FIG. 3 for PCR curve 110. Thus, even if the PCR curve is divided by a constant
(e.g., due to using a different machine), then one gets the same Ct.
V. PARABOLIC CURVES
[0048] As mentioned above, parabolic curves are problematic for certain techniques for calculating
Ct. For example, an inflexion point (maximum of first derivative and zero of second
derivative) is not always available. Additionally, using a maximum of the second derivative
can provide poor results. However, embodiments of the present invention can reliably
provide better Ct values.
[0049] FIG. 6A shows a plot 600 of PCR data points 605 and function 610 that approximate
points 605 according to embodiments of the present invention. As shown, function 610
was fit using equation (1). FIG. 6B shows a plot 650 of the second derivative 660
of function 610. Plot 650 shows that the second derivative 660 has a second derivative
maximum (at 49.31). But, there is no inflection point, as the second derivative does
not go through zero after its increase from the baseline. Hence, it is not possible
to determine the Ct using the slope at the inflection point.
[0050] It is possible to determine a Ct using the second derivative maximum, but the estimate
is 49.31, which is the maximum of second derivative 660. Using an intersection of
the tangent (i.e. a line tangent to function 610 at cycle 49.31) with the baseline
provides Ct = 45.53, which is a better estimate than 49.31. Using the tangent line
at the maximum of second derivative 660 brings Ct more in line with elbow of function
610.
VI. CALIBRATION CURVES
[0051] As described above, a calibration curve can be used to determine an initial concentration
of a sample using a Ct value. Such calibration curves are normally presented as a
log of concentration, and give a linear plot. With the value of Ct one can then obtain
the corresponding initial concentration on a log scale. The following calibration
data is for an assay covering a range of nine logs (i.e. 10
9 range in concentration).
[0052] FIG. 7A shows a plot 700 of a calibration curve 710 determined according to embodiments
of the present invention. The X-axis is the log of concentration and the Y-axis is
delta Ct (target Ct minus control Ct), where the control Ct is the Ct measured with
a fixed amount of pure species under investigation. Calibration curve 710 has the
linear form of 3.268x+8.862. It is seen in FIG. 7A that calibration curve 760 shows
near perfect linearity of R
2 = 0.997 when delta Ct is plotted verses the logarithm of concentration.
[0053] For comparison, FIG. 7B shows an analogous plot 750 of a calibration curve 760 determined
using the second derivative maximum. Calibration curve 760 has the linear form of
3.235x+8.635, with an R
2 of .995. Thus, the embodiments used for plot 700 have even slightly better linearity
than a technique using the second derivative maximum. Additionally, an advantage over
using the maximum of the second derivative as the Ct value for non-parabolic curves
is a smaller and more realistic Ct value.
VII. CORRELATION TO EXPECTED CT
[0054] As a further check on the accuracy of embodiment of the present invention, the correlation
of the measured Ct is compared to an expected Ct. The expected Ct is determined by
what a researcher would estimate visually, e.g., just when the curve is rising above
the baseline.
[0055] FIG. 8A shows a plot 800 of a correlation line 810 between the measured Ct using
the second derivative maximum and the expected Ct. A parabolic method (see, e.g.,
US patent 8,219,366) was used for parabolic curves. In the area 820 highlighted in an oval, these horizontal
data points are the result of the implementation of the parabolic-specific method,
which gives decreased linearity. Each data point corresponds to the measured Ct value
and the expected Ct value of a PCR curve. Correlation line 810 is a linear fit to
the data and has the form 0.9116x+4.28. If there was perfect correlation then line
would have slope 1 and 0 y-intercept and R
2 of one. Here, R
2 equals 0.96, as shown in plot 800. Also, the calculated Ct values are generally two
Ct values higher than the expected Ct. The difference in two Ct values can be seen
by looking at the correlation line being at measured Ct 27 when the expected the expected
Ct is 25.
[0056] FIG. 8B shows a plot 850 of a correlation line 860 between the measured Ct using
an embodiment of the present invention and the expected Ct. A parabolic method was
not used for any of the data points. Correlation line 860 is a linear fit to the data
and has the form 1.029x+1.39. The linear fit is better with an R
2 of 0.98 vs. 0.96. Also, it is seen that there is minimal offset between expected
Ct and calculated Ct. Furthermore, the slope is very close to 1 (1.03 vs. 0.91). This
demonstrates that calculating the Ct using embodiment of this invention on PCR curves
that are sigmoidal and parabolic is superior to calculating Ct values with the second
derivative maximum for sigmoidal and switching to a different technique for parabolic
curves.
VIII. COMPARISONS TO BASELINE SUBTRACTION WITH DIVISION
[0057] Embodiments of the present invention also compare favorably to the baseline subtraction
with division method using an AFL (arbitrary fluorescence value). In the AFL method,
one subtracts out baseline from the sigmoidal functional fit, and divide by the intercept
of the baseline. The Ct is determined by the cycle when the result hits the AFL threshold.
[0058] FIG. 9 shows a plot 900 of two raw data curves 910 and 920. In both cases, the expected
Ct value is Ct = 36. The Ct values calculated using the Baseline Subtraction with
Division are 35.03 for curve 910 and 37.06 for curve 920. The Ct using embodiments
of the present invention gives 35.86 for curve 910 and 35.43 for curve 920. As one
can see, embodiments of the present invention give better agreement to the expected
Ct value (36). Additionally, the values 35.86 and 35.43 are closer to each other,
thereby providing greater precision.
IX. COMPUTER SYSTEM AND COMPUTER PRODUCT
[0059] Any of the computer systems mentioned herein may utilize any suitable number of subsystems.
Examples of such subsystems are shown in FIG. 10 in computer apparatus 1000. In some
embodiments, a computer system includes a single computer apparatus, where the subsystems
can be the components of the computer apparatus. In other embodiments, a computer
system can include multiple computer apparatuses, each being a subsystem, with internal
components.
[0060] The subsystems shown in FIG. 10 are interconnected via a system bus 1075. Additional
subsystems such as a printer 1074, keyboard 1078, storage device(s) 1079, monitor
1076, which is coupled to display adapter 1082, and others are shown. Peripherals
and input/output (I/O) devices, which couple to I/O controller 1071, can be connected
to the computer system by any number of means known in the art, such as serial port
1077. For example, serial port 1077 or external interface 1081 (e.g. Ethernet, Wi-Fi,
etc.) can be used to connect computer system 1000 to a wide area network such as the
Internet, a mouse input device, or a scanner. The interconnection via system bus 1075
allows the central processor 1073 to communicate with each subsystem and to control
the execution of instructions from system memory 1072 or the storage device(s) 1079
(e.g., a fixed disk), as well as the exchange of information between subsystems. The
system memory 1072 and/or the storage device(s) 1079 may embody a computer readable
medium. Any of the values mentioned herein can be output from one component to another
component and can be output to the user.
[0061] A computer system can include a plurality of the same components or subsystems, e.g.,
connected together by external interface 1081 or by an internal interface. In some
embodiments, computer systems, subsystem, or apparatuses can communicate over a network.
In such instances, one computer can be considered a client and another computer a
server, where each can be part of a same computer system. A client and a server can
each include multiple systems, subsystems, or components.
[0062] It should be understood that any of the embodiments of the present invention can
be implemented in the form of control logic using hardware (e.g. an application specific
integrated circuit or field programmable gate array) and/or using computer software
with a generally programmable processor in a modular or integrated manner. As user
herein, a processor includes a multi-core processor on a same integrated chip, or
multiple processing units on a single circuit board or networked. Based on the disclosure
and teachings provided herein, a person of ordinary skill in the art will know and
appreciate other ways and/or methods to implement embodiments of the present invention
using hardware and a combination of hardware and software.
[0063] Any of the software components or functions described in this application may be
implemented as software code to be executed by a processor using any suitable computer
language such as, for example, Java, C++ or Perl using, for example, conventional
or object-oriented techniques. The software code may be stored as a series of instructions
or commands on a computer readable medium for storage and/or transmission, suitable
media include random access memory (RAM), a read only memory (ROM), a magnetic medium
such as a hard-drive or a floppy disk, or an optical medium such as a compact disk
(CD) or DVD (digital versatile disk), flash memory, and the like. The computer readable
medium may be any combination of such storage or transmission devices.
[0064] Such programs may also be encoded and transmitted using carrier signals adapted for
transmission via wired, optical, and/or wireless networks conforming to a variety
of protocols, including the Internet. As such, a computer readable medium according
to an embodiment of the present invention may be created using a data signal encoded
with such programs. Computer readable media encoded with the program code may be packaged
with a compatible device or provided separately from other devices (e.g., via Internet
download). Any such computer readable medium may reside on or within a single computer
program product (e.g. a hard drive, a CD, or an entire computer system), and may be
present on or within different computer program products within a system or network.
A computer system may include a monitor, printer, or other suitable display for providing
any of the results mentioned herein to a user.
[0065] Thus, embodiments can be directed to computer systems including one or more processors
configured to perform the steps of any of the methods described herein, potentially
with different components performing a respective steps or a respective group of steps.
Although presented as numbered steps, steps of methods herein can be performed at
a same time or in a different order. Additionally, portions of these steps may be
used with portions of other steps from other methods. Also, all or portions of a step
may be optional. Additionally, any of the steps of any of the methods can be performed
with modules, circuits, or other means for performing these steps.
[0066] In some embodiments the method of the invention is embodied in a computer product.
Hence, such a computer product comprises a non-transitory computer readable medium
storing a plurality of instructions that when executed control a computer system to
determine a cycle threshold value Ct in a growth curve of a growth process, wherein
the instructions comprise receiving a dataset representing a growth curve, the dataset
including a plurality of data points, each data point having a pair of coordinate
values of a cycle number and a signal strength of the growth process at the cycle
number; calculating a function that approximates the dataset; determining a baseline
of the growth curve, the baseline being linear; computing a first point of the function
where a maximum in a second derivative of the function occurs; determining a tangent
line that is tangent to the function at the first point; computing an intersection
point of the tangent line and the baseline, the cycle number of the intersection point
being the cycle threshold value Ct.
[0067] In certain embodiments of the computer product the first point has a cycle number
of xval and a signal strength of yval, and wherein determining the tangent line includes
determining a slope slp of the function at {xval,yval} to obtain the tangent line
as yval+slp(x-xval), where x is cycle number. In other embodiments of the computer
product the baseline is determined to have a functional form of ax+b, and wherein
computing the intersection point of the tangent line and the baseline includes solving
the following equation for x:

[0068] In yet other embodiments of the computer product the function has a functional form
of a double sigmoid, and wherein the double sigmoid has an equation:

wherein the instructions further comprise calculating the second derivative of the
double sigmoid function.
X. PCR SYSTEM
[0069] In certain aspects the invention also provides PCR Systems. An examplary PCR system
is displayed in Fig. 11-12. Fig. 11 shows a general block diagram explaining the relation
between software and hardware resources that may be used to implement the method and
system of the invention. The system depicted on Fig. 12 comprises a kinetic PCR analysis
module which may be located in a thermocycler device and an intelligence module which
is part of the computer system. The data sets (PCR data sets) are transferred from
the analysis module to the intelligence module or vice versa via a network connection
or a direct connection. The data sets may for example be processed according to the
flowchart as depicted on Fig. 4. This flowchart may conveniently be implemented by
software stored on the hardware of a computer system for example according to the
flowchart as depicted on Fig. 11. Referring to Fig. 11, computer system (2000) may
comprise receiving means (2010) for example for receiving fluorescence data obtained
during PCR reactions, calculating means (2020) for processing said data by calculating
a function that approximates the dataset, first determining means (2030) for determining
a baseline of the growth curve, which baseline is linear, first computing means (2040)
for determining a first point of the function, where a maximum in a second derivative
of the function occurs, a second determining means (2050) for determining a tangent
line that is tangent the first point determined by the computing means 2040 and a
second computing means (2060) for calculating an intersection point of the tangent
line and the baseline and thereby determining the Ct value. In certain embodiments
the system may also comprise displaying means (2070) for displaying the results on
a computer screen. Fig. 12 illustrates the interaction between the thermocycler device
and the computer system. The system comprises a kinetic PCR analysis module which
may be located in a thermocycler device and an intelligence module which is part of
the computer system. The data sets (PCR data sets) are transferred from the analysis
module to the intelligence module or vice versa via a network connection or a direct
connection. The data sets may be processed according to Fig. 11 by computer code running
on the processor and being stored on the storage device of the intelligence module
and after processing transferred back to the storage device of the analysis module,
where the modified data may be displayed on a displaying device. In some embodiments
the intelligence module may also be implemented on the thermocycler.
[0070] In certain aspects, the invention provides a Polymerase Chain Reaction (PCR) system
that comprises a PCR data acquiring device that generates a PCR dataset representing
a PCR amplification curve, said dataset including a plurality of data points, each
having a pair of coordinate values, wherein said dataset includes data points in a
region of interest which includes a cycle threshold (Ct) value; and an intelligence
module adapted to process the PCR dataset to determine the Ct value, by receiving
a dataset representing a growth curve, the dataset including a plurality of data points,
each data point having a pair of coordinate values of a cycle number and a signal
strength of the growth process at the cycle number; calculating a function that approximates
the dataset; determining a baseline of the growth curve, the baseline being linear;
computing a first point of the function where a maximum in a second derivative of
the function occurs; determining a tangent line that is tangent to the function at
the first point; computing an intersection point of the tangent line and the baseline,
the cycle number of the intersection point being the cycle threshold value Ct. In
certain embodiments of the PCR system the first point has a cycle number of xval and
a signal strength of yval, and wherein determining the tangent line includes determining
a slope slp of the function at {xval,yval} to obtain the tangent line as yval+slp(x-xval),
where x is cycle number. In other embodiments of the PCR system the baseline is determined
to have a functional form of ax+b, and wherein computing the intersection point of
the tangent line and the baseline includes solving the following equation for x:

[0071] In yet other embodiments of the PCR system the function has a functional form of
a double sigmoid, and wherein the double sigmoid has an equation:

wherein the instructions further comprise calculating the second derivative of the
double sigmoid function.
[0072] A recitation of "a", "an" or "the" is intended to mean "one or more" unless specifically
indicated to the contrary.
1. A method of determining a cycle threshold value Ct in a growth curve of a growth process,
the method comprising:
- receiving a dataset representing a growth curve, the dataset including a plurality
of data points, each data point having a pair of coordinate values of a cycle number
and a signal strength of the growth process at the cycle number;
- calculating a function that approximates the dataset;
- determining a baseline of the growth curve, the baseline being linear;
- computing, with a computer system, a first point of the function where a maximum
in a second derivative of the function occurs;
- determining, with the computer system, a tangent line that is tangent to the function
at the first point;
- computing, with the computer system, an intersection point of the tangent line and
the baseline, the cycle number of the intersection point being the cycle threshold
value Ct.
2. The method of claim 1, wherein the first point has a cycle number of xval and a signal
strength of yval, and wherein determining the tangent line includes determining a
slope slp of the function at {xval,yval} to obtain the tangent line as yval+slp(x-xval),
where x is cycle number.
3. The method of any one of claims 1 or 2, wherein the baseline is determined to have
a functional form of ax+b, and wherein computing the intersection point of the tangent
line and the baseline includes solving the following equation for x:
4. The method of any one of claims 1 to 3, wherein the function has a functional form
of a double sigmoid and wherein the double sigmoid has an equation:
5. The method of any one of claims 1 to 4, wherein the growth process is a polymerase
chain reaction (PCR) amplification.
6. The method of any one of claims 1 to 5, further comprising:
- removing a portion of the data points before calculating the function.
7. The method of any one of claims 1 to 6, wherein the baseline is determined from the
function.
8. The method of any one of claims 1 to 7, further comprising;
- calculating the second derivative of the function.
9. A computer product comprising a non-transitory computer readable medium storing a
plurality of instructions that when executed control a computer system to determine
a cycle threshold value Ct in a growth curve of a growth process, the instructions
comprising:
- receiving a dataset representing a growth curve, the dataset including a plurality
of data points, each data point having a pair of coordinate values of a cycle number
and a signal strength of the growth process at the cycle number;
- calculating a function that approximates the dataset;
- determining a baseline of the growth curve, the baseline being linear;
- computing a first point of the function where a maximum in a second derivative of
the function occurs;
- determining a tangent line that is tangent to the function at the first point;
- computing an intersection point of the tangent line and the baseline, the cycle
number of the intersection point being the cycle threshold value Ct.
10. The computer product of claim 9, wherein the first point has a cycle number of xval
and a signal strength of yval, and wherein determining the tangent line includes determining
a slope slp of the function at {xval,yval} to obtain the tangent line as yval+slp(x-xval),
where x is cycle number.
11. The computer product of any one of claims 9 or 10, wherein the baseline is determined
to have a functional form of ax+b, and wherein computing the intersection point of
the tangent line and the baseline includes solving the following equation for x:
12. The computer product of any one of claims 9 to 11, wherein the function has a functional
form of a double sigmoid, and wherein the double sigmoid has an equation:

wherein the instructions further comprise:
- calculating the second derivative of the double sigmoid function.
13. A Polymerase Chain Reaction (PCR) system, comprising:
- a PCR data acquiring device that generates a PCR dataset representing a PCR amplification
curve, said dataset including a plurality of data points, each having a pair of coordinate
values, wherein said dataset includes data points in a region of interest which includes
a cycle threshold (Ct) value; and
- an intelligence module adapted to process the PCR dataset to determine the Ct value,
by:
- receiving a dataset representing a growth curve, the dataset including a plurality
of data points, each data point having a pair of coordinate values of a cycle number
and a signal strength of the growth process at the cycle number;
- calculating a function that approximates the dataset;
- determining a baseline of the growth curve, the baseline being linear;
- computing a first point of the function where a maximum in a second derivative of
the function occurs;
- determining a tangent line that is tangent to the function at the first point;
- computing an intersection point of the tangent line and the baseline, the cycle
number of the intersection point being the cycle threshold value Ct.
14. The PCR system of claim 13, wherein the first point has a cycle number of xval and
a signal strength of yval, and wherein determining the tangent line includes determining
a slope slp of the function at {xval,yval} to obtain the tangent line as yval+slp(x-xval),
where x is cycle number.
15. The PCR system of any one of claims 13 or 14, wherein the baseline is determined to
have a functional form of ax+b, and wherein computing the intersection point of the
tangent line and the baseline includes solving the following equation for x:
16. The PCR system of any one of claims 13 to 15, wherein the function has a functional
form of a double sigmoid, and wherein the double sigmoid has an equation:

wherein the instructions further comprise:
- calculating the second derivative of the double sigmoid function.
1. Verfahren zur Bestimmung eines Zyklusschwellenwerts Ct in einer Wachstumskurve eines
Wachstumsvorgangs, wobei das Verfahren umfasst:
- Empfangen eines Datensatzes, der eine Wachstumskurve darstellt, wobei der Datensatz
eine Vielzahl von Datenpunkten umfasst, wobei jeder Datenpunkt ein Paar von Koordinatenwerten
aus einer Zyklusnummer und einer Signalstärke des Wachstumsvorgangs bei der Zyklusnummer
umfasst;
- Berechnen einer Funktion, die dem Datensatz nahekommt;
- Bestimmen einer Basislinie der Wachstumskurve, wobei die Basislinie linear ist;
- Berechnen, mithilfe eines Computersystems, eines ersten Punkts der Funktion, bei
dem ein Maximum in einer zweiten Ableitung der Funktion auftritt;
- Bestimmen, mithilfe des Computersystems, einer Tangente, die tangential zur Funktion
beim ersten Punkt ist;
- Berechnen, mithilfe des Computersystems, eines Schnittpunkts der Tangente und der
Basislinie, wobei die Zyklusnummer des Schnittpunkts der Zyklusschwellenwert Ct ist.
2. Verfahren nach Anspruch 1, wobei der erste Punkt eine Zyklusnummer xval und eine Signalstärke
yval aufweist und wobei das Bestimmen der Tangente das Bestimmen einer Steigung slp
der Funktion bei {xval,yval} umfasst, um die Tangente als yval+slp(x-xval) zu erhalten,
wobei x die Zyklusnummer ist.
3. Verfahren nach Anspruch 1 oder 2, wobei bestimmt wird, dass die Basislinie eine Funktionsform
ax+b aufweist und wobei das Berechnen des Schnittpunkts der Tangente und der Basislinie
das Lösen der folgenden Gleichung für x umfasst:
4. Verfahren nach einem der Ansprüche 1 bis 3, wobei die Funktion eine Doppelsigmoid-Funktionsform
aufweist und wobei das Doppelsigmoid folgende Gleichung aufweist:
5. Verfahren nach einem der Ansprüche 1 bis 4, wobei der Wachstumsvorgang eine Polymerase-Kettenreaktion
(PCR)-Amplifikation ist.
6. Verfahren nach einem der Ansprüche 1 bis 5, ferner umfassend:
- Entfernen eines Teils der Datenpunkte, bevor die Funktion berechnet wird.
7. Verfahren nach einem der Ansprüche 1 bis 6, wobei die Basislinie aus der Funktion
bestimmt wird.
8. Verfahren nach einem der Ansprüche 1 bis 7, ferner umfassend:
- Berechnen der zweiten Ableitung der Funktion.
9. Computerprodukt, das ein nichtflüchtiges computerlesbares Medium umfasst, auf dem
eine Vielzahl von Anweisungen gespeichert ist, die bei ihrer Ausführung ein Computersystem
steuern, um einen Zyklusschwellenwert Ct in einer Wachstumskurve eines Wachstumsvorgangs
zu bestimmen, wobei die Anweisungen umfassen:
- Empfangen eines Datensatzes, der eine Wachstumskurve darstellt, wobei der Datensatz
eine Vielzahl von Datenpunkten umfasst, wobei jeder Datenpunkt ein Paar von Koordinatenwerten
aus einer Zyklusnummer und einer Signalstärke des Wachstumsvorgangs bei der Zyklusnummer
umfasst;
- Berechnen einer Funktion, die dem Datensatz nahekommt;
- Bestimmen einer Basislinie der Wachstumskurve, wobei die Basislinie linear ist;
- Berechnen eines ersten Punkts der Funktion, bei dem ein Maximum in einer zweiten
Ableitung der Funktion auftritt;
- Bestimmen einer Tangente, die tangential zur Funktion beim ersten Punkt ist;
- Berechnen eines Schnittpunkts der Tangente und der Basislinie, wobei die Zyklusnummer
des Schnittpunkts der Zyklusschwellenwert Ct ist.
10. Computerprodukt nach Anspruch 9, wobei der erste Punkt eine Zyklusnummer xval und
eine Signalstärke yval aufweist und wobei das Bestimmen der Tangente das Bestimmen
einer Steigung slp der Funktion bei {xval,yval} umfasst, um die Tangente als yval+slp(x-xval)
zu erhalten, wobei x die Zyklusnummer ist.
11. Computerprodukt nach einem der Ansprüche 9 oder 10, wobei bestimmt wird, dass die
Basislinie eine Funktionsform ax+b aufweist und wobei das Berechnen des Schnittpunkts
der Tangente und der Basislinie das Lösen der folgenden Gleichung für x umfasst:
12. Computerprodukt nach einem der Ansprüche 9 bis 11, wobei die Funktion eine Doppelsigmoid-Funktionsform
aufweist und wobei das Doppelsigmoid folgende Gleichung aufweist:

wobei die Anweisungen ferner umfassen:
- Berechnen der zweiten Ableitung der Doppelsigmoidfunktion.
13. Polymerase-Kettenreaktion (PCR)-System, umfassend:
- eine PCR-Daten gewinnende Vorrichtung, die einen PCR-Datensatz erzeugt, der eine
PCR-Amplifikationskurve darstellt, wobei der Datensatz eine Vielzahl von Datenpunkten
umfasst, die jeweils ein Paar Koordinatenwerte umfassen, wobei der Datensatz Datenpunkte
in einem Bereich von Interesse umfasst, der einen Zyklusschwellenwert (Ct) umfasst;
und
- ein Intelligenzmodul, das ausgelegt ist, um den PCR-Datensatz zu verarbeiten, um
den Ct-Wert wie folgt zu bestimmen:
- Empfangen eines Datensatzes, der eine Wachstumskurve darstellt, wobei der Datensatz
eine Vielzahl von Datenpunkten umfasst, wobei jeder Datenpunkt ein Paar von Koordinatenwerten
aus einer Zyklusnummer und einer Signalstärke des Wachstumsvorgangs bei der Zyklusnummer
umfasst;
- Berechnen einer Funktion, die dem Datensatz nahekommt;
- Bestimmen einer Basislinie der Wachstumskurve, wobei die Basislinie linear ist;
- Berechnen eines ersten Punkts der Funktion, bei dem ein Maximum in einer zweiten
Ableitung der Funktion auftritt;
- Bestimmen einer Tangente, die tangential zur Funktion beim ersten Punkt ist;
- Berechnen eines Schnittpunkts der Tangente und der Basislinie, wobei die Zyklusnummer
des Schnittpunkts der Zyklusschwellenwert Ct ist.
14. PCR-System nach Anspruch 13, wobei der erste Punkt eine Zyklusnummer xval und eine
Signalstärke yval aufweist und wobei das Bestimmen der Tangente das Bestimmen einer
Steigung slp der Funktion bei {xval,yval} umfasst, um die Tangente als yval+slp(x-xval)
zu erhalten, wobei x die Zyklusnummer ist.
15. PCR-System nach einem der Ansprüche 13 oder 14, wobei bestimmt wird, dass die Basislinie
eine Funktionsform ax+b aufweist und wobei das Berechnen des Schnittpunkts der Tangente
und der Basislinie das Lösen der folgenden Gleichung für x umfasst:
16. PCR-System nach einem der Ansprüche 13 bis 15, wobei die Funktion eine Doppelsigmoid-Funktionsform
aufweist und wobei das Doppelsigmoid folgende Gleichung aufweist:

wobei die Anweisungen ferner umfassen:
- Berechnen der zweiten Ableitung der Doppelsigmoidfunktion.
1. Méthode de détermination d'une valeur du cycle seuil Ct dans une courbe de croissance
d'un procédé de croissance, la méthode comprenant :
- la réception d'un ensemble de données représentant une courbe de croissance, l'ensemble
de données comprenant une pluralité de points de données, chaque point de données
ayant une paire de valeurs de coordonnées d'un nombre de cycles et une intensité de
signal du procédé de croissance au nombre de cycles ;
- le calcul d'une fonction qui approxime l'ensemble de données ;
- la détermination d'une ligne de base de la courbe de croissance, la ligne de base
étant linéaire ;
- le calcul, avec un système informatique, d'un premier point de la fonction où se
produit un maximum d'une dérivée seconde de la fonction ;
- la détermination, avec le système informatique, d'une ligne tangente qui est tangente
à la fonction au premier point ;
- le calcul, avec le système informatique, d'un point d'intersection de la ligne tangente
et de la ligne de base, le nombre de cycles du point d'intersection étant la valeur
du cycle seuil Ct.
2. Méthode selon la revendication 1, dans laquelle le premier point a un nombre de cycles
xval et une intensité de signal yval et dans laquelle la détermination de la ligne
tangente comprend la détermination d'une pente slp de la fonction à {xval,yval} pour
obtenir la ligne tangente par yval+slp(x-xval), où x est le nombre de cycles.
3. Méthode selon l'une quelconque des revendications 1 ou 2, dans laquelle la ligne de
base est déterminée pour avoir une forme fonctionnelle ax+b et dans laquelle le calcul
du point d'intersection de la ligne tangente et de la ligne de base comprend la résolution
de l'équation suivante pour x :
4. Méthode selon l'une quelconque des revendications 1 à 3, dans laquelle la fonction
a une forme fonctionnelle de double sigmoïde et dans laquelle la double sigmoïde a
une équation :
5. Méthode selon l'une quelconque des revendications 1 à 4, dans laquelle le procédé
de croissance est une amplification par réaction en chaîne par polymérase (PCR).
6. Méthode selon l'une quelconque des revendications 1 à 5, comprenant en outre :
- la suppression d'une partie des points de données avant le calcul de la fonction.
7. Méthode selon l'une quelconque des revendications 1 à 6, dans laquelle la ligne de
base est déterminée à partir de la fonction.
8. Méthode selon l'une quelconque des revendications 1 à 7, comprenant en outre :
- le calcul de la dérivée seconde de la fonction.
9. Produit informatique comprenant un support non transitoire lisible par ordinateur
stockant une pluralité d'instructions qui, lorsqu'elles sont exécutées, commandent
un système informatique pour déterminer une valeur du cycle seuil Ct dans une courbe
de croissance d'un procédé de croissance, les instructions comprenant :
- la réception d'un ensemble de données représentant une courbe de croissance, l'ensemble
de données comprenant une pluralité de points de données, chaque point de données
ayant une paire de valeurs de coordonnées d'un nombre de cycles et une intensité de
signal du procédé de croissance au nombre de cycles ;
- le calcul d'une fonction qui approxime l'ensemble de données ;
- la détermination d'une ligne de base de la courbe de croissance, la ligne de base
étant linéaire ;
- le calcul d'un premier point de la fonction où se produit un maximum d'une dérivée
seconde de la fonction ;
- la détermination d'une ligne tangente qui est tangente à la fonction au premier
point ;
- le calcul d'un point d'intersection de la ligne tangente et de la ligne de base,
le nombre de cycles du point d'intersection étant la valeur du cycle seuil Ct.
10. Produit informatique selon la revendication 9, dans lequel le premier point a un nombre
de cycles xval et une intensité de signal yval et dans lequel la détermination de
la ligne tangente comprend la détermination d'une pente slp de la fonction à {xval,yval}
pour obtenir la ligne tangente par yval+slp(x-xval), où x est le nombre de cycles.
11. Produit informatique selon l'une quelconque des revendications 9 ou 10, dans lequel
la ligne de base est déterminée pour avoir une forme fonctionnelle ax+b et dans lequel
le calcul du point d'intersection de la ligne tangente et de la ligne de base comprend
la résolution de l'équation suivante en x :
12. Produit informatique selon l'une quelconque des revendications 9 à 11, dans lequel
la fonction a une forme fonctionnelle de double sigmoïde et dans lequel la double
sigmoïde a une équation :

dans lequel les instructions comprennent en outre :
- le calcul de la dérivée seconde de la fonction double sigmoïde.
13. Système de réaction en chaîne par polymérase (PCR) comprenant :
- un dispositif d'acquisition de données par PCR qui génère un ensemble de données
PCR représentant une courbe d'amplification par PCR, ledit ensemble de données comprenant
une pluralité de points de données, chacun ayant une paire de valeurs de coordonnées,
ledit ensemble de données comprenant des points de données dans une région d'intérêt
qui comprend une valeur du cycle seuil (Ct) ; et
- un module d'intelligence conçu pour traiter l'ensemble de données PCR afin de déterminer
la valeur Ct par :
- la réception d'un ensemble de données représentant une courbe de croissance, l'ensemble
de données comprenant une pluralité de points de données, chaque point de données
ayant une paire de valeurs de coordonnées d'un nombre de cycles et une intensité de
signal du procédé de croissance au nombre de cycles ;
- le calcul d'une fonction qui approxime l'ensemble de données ;
- la détermination d'une ligne de base de la courbe de croissance, la ligne de base
étant linéaire ;
- le calcul d'un premier point de la fonction où se produit un maximum d'une dérivée
seconde de la fonction ;
- la détermination d'une ligne tangente qui est tangente à la fonction au premier
point ;
- le calcul d'un point d'intersection de la ligne tangente et de la ligne de base,
le nombre de cycles du point d'intersection étant la valeur du cycle seuil Ct.
14. Système de PCR selon la revendication 13, dans lequel le premier point a un nombre
de cycles xval et une intensité de signal yval et dans lequel la détermination de
la ligne tangente comprend la détermination d'une pente slp de la fonction à {xval,yval}
pour obtenir la ligne tangente qui est yval+slp(x-xval), où x est le nombre de cycles.
15. Système de PCR selon l'une quelconque des revendications 13 ou 14, dans lequel la
ligne de base est déterminée pour avoir une forme fonctionnelle ax+b et dans lequel
le calcul du point d'intersection de la ligne tangente et de la ligne de base comprend
la résolution de l'équation suivante en x :
16. Système de PCR selon l'une quelconque des revendications 13 à 15, dans lequel la fonction
a une forme fonctionnelle de double sigmoïde et dans lequel la double sigmoïde a une
équation :

dans lequel les instructions comprennent en outre :
- le calcul de la dérivée seconde de la fonction double sigmoïde.